Finally: some cutting-edge climate social science on NPR!
The brilliant @triofrancos explains how we can avoid tons of dangerous, contested mining by pumping up public transit and driving normal size EVs. Your weekend dose of @cpluscp ☕️.
https://t.co/dax9HraiM5
Mon collègue @CjBayesian a présenté une affiche sur l'#IA qui prédit la discordance diagnostique pour les cas de #mélanome lors du récent Digital Pathology & AI Congress (Europe) et l'a récapitulée sur le blog de @ProsciaInc : https://t.co/QvVAHabWhJ
Read more about our latest research wherein we demonstrate the how AI can identify melanoma cases with the highest diagnostic uncertainty. https://t.co/fTJVl7T5rt @ProsciaInc @SeanGrullon@juliannalog@vvaughnage
From London to the blog - Sr. AI Scientist @CjBayesian recaps his poster presentation from #DigitalPathology & AI Congress: Europe. Get a look at our research demonstrating the promise of AI to identify melanoma cases w/ the highest diagnostic uncertainty. https://t.co/sZJmVYOzyu
🚨 NEW 🚨 in @JCOCCI_ASCO: #MachineLearning algorithms to predict mortality or adverse events are often based on routinely-collected administrative #data. Big limitation. How does incorporating the #patient voice into predictions help? Answer: A lot! https://t.co/VFzRXuRgVI
Excited to share our team's work in London this week. We use AI to quantify implicit intra-pathologist discordance using only inter-pathologist data. This is key to understanding how much diagnostic signal the AI can capture!
Finalizing your agenda for Digital Pathology and AI Congress? Don't miss our Senior AI Scientist Corey Chivers' poster presentation. Until then, get a glimpse of the research and see our full plans for the event on our dedicated page. https://t.co/ZcGSvu0rsK #DigiPathGE
We model each pathologist's probability of labeling a melanocytic lesion as malignant in order to determine how often we would expect pairs of pathologists to agree. Deviations from this expectation represent intra-pathologist diagnostic certainty that remains un-captured by AI.
Our work on predicting pathologist concordance of melanoma diagnosis detection is up! Helping identify the 'hard cases' will allow efficient routing to specialist, improving accuracy and reducing time-to-diagnosis.
Using Whole Slide Image Representations from Self-Supervised Contrastive Learning for Melanoma Concordance Regression
https://t.co/gB3zB3GIku
by Sean Grullon et al. including @juliannalog#ArtificialIntelligence#Recall
Just announced! @unilabs has selected @ProsciaInc's DermAI to advance its aspiration of becoming the most digitally-driven diagnostic group. Read the full release for more. https://t.co/6kcPiNAZ17
“I take our land-grant mission to heart...I believe it is my responsibility as a researcher and a citizen.” Learn more about how @ayazhyder is turning data into solutions for improving the health and well-being of people in his community and beyond. https://t.co/0KRK3pXPwD
Today! Senior AI Scientist Vaughn Spurrier takes the #ECDP2022 stage to present "Automated Quality Control of Whole Slide Images Using Artificial Intelligence." Catch his presentation in Ballroom II at 9:40 CEST.
🚨NEW🚨 in @PLOSONE led by @erichli1: Suppose a validated #MachineLearning algorithm identifies that your patient is at risk for a bad outcome. How do you respond? The answer: It depends on what type of doctor you are... https://t.co/5kcbxWXSSx
Fighting sepsis is an ongoing battle and for patients with hospital acquired sepsis, capacity strain may contribute to antimicrobial delays. Learn more about this important underlying factor in new research from PAIR fellow @JenGinestraMD. @garyweissman
https://t.co/V0YGOlGT8D